Refa\c{c}ade: Editing Object with Given Reference Texture

arXiv — cs.CVFriday, December 5, 2025 at 5:00:00 AM
  • Recent advancements in diffusion models have led to the introduction of Refa\c{c}ade, a novel method for Object Retexture, which allows for the transfer of local textures from a reference object to a target object in images or videos. This method addresses the limitations of existing approaches by enhancing controllability and precision in texture transfer through innovative designs, including a texture remover trained on 3D mesh renderings.
  • The development of Refa\c{c}ade is significant as it improves the capabilities of image and video editing, particularly in achieving more accurate and controllable texture applications. This advancement could have implications for various industries, including gaming, film, and virtual reality, where realistic texture representation is crucial.
  • The introduction of Refa\c{c}ade aligns with ongoing trends in AI-driven image processing, where enhancing the quality and realism of digital content is a primary focus. This development is part of a broader movement towards integrating advanced machine learning techniques in creative fields, addressing challenges such as texture mismatches and inconsistencies that have historically hindered the editing process.
— via World Pulse Now AI Editorial System

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